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Linear systems with sparse inputs: Observability and input recovery

机译:输入稀疏的线性系统:可观察性和输入恢复

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In this work, we introduce a new class of linear time-invariant systems for which, at each time instant, the input is sparse with respect to an overcomplete dictionary of inputs. Such systems may be appropriate for modeling a system which exhibits multiple discrete behaviors orchestrated by the sparse input. Although the input is assumed to be unknown, we show that the additional structure imposed on the input allows us to recover both the initial state and the sparse, but unknown, input from output measurements alone. For this purpose, we derive sufficient observability and sparse recovery conditions that integrate classical observability conditions for linear systems with incoherence conditions for sparse recovery. We also propose a convex optimization algorithm for jointly estimating the initial condition and recovering the sparse input.
机译:在这项工作中,我们引入了一类新的线性时不变系统,相对于输入字典的不完全而言,对于每个输入时刻,输入系统都是稀疏的。这样的系统可能适合于对表现出由稀疏输入精心策划的多个离散行为的系统进行建模。尽管假定输入是未知的,但我们证明了施加在输入上的附加结构使我们能够仅从输出测量中恢复初始状态和稀疏但未知的输入。为此,我们获得了足够的可观测性和稀疏恢复条件,这些条件将线性系统的经典可观测性条件与稀疏恢复的不相干条件相结合。我们还提出了一种凸优化算法,用于联合估计初始条件和恢复稀疏输入。

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